An exploration of the encoding of grammatical gender in word embeddings

Publikation: Working paperPreprintForskning

Standard

An exploration of the encoding of grammatical gender in word embeddings. / Veeman, Hartger; Basirat, Ali.

2020.

Publikation: Working paperPreprintForskning

Harvard

Veeman, H & Basirat, A 2020 'An exploration of the encoding of grammatical gender in word embeddings'.

APA

Veeman, H., & Basirat, A. (2020). An exploration of the encoding of grammatical gender in word embeddings.

Vancouver

Veeman H, Basirat A. An exploration of the encoding of grammatical gender in word embeddings. 2020 aug. 5.

Author

Veeman, Hartger ; Basirat, Ali. / An exploration of the encoding of grammatical gender in word embeddings. 2020.

Bibtex

@techreport{06d9ce23305840d7a9bd938d4f218903,
title = "An exploration of the encoding of grammatical gender in word embeddings",
abstract = " The vector representation of words, known as word embeddings, has opened a new research approach in linguistic studies. These representations can capture different types of information about words. The grammatical gender of nouns is a typical classification of nouns based on their formal and semantic properties. The study of grammatical gender based on word embeddings can give insight into discussions on how grammatical genders are determined. In this study, we compare different sets of word embeddings according to the accuracy of a neural classifier determining the grammatical gender of nouns. It is found that there is an overlap in how grammatical gender is encoded in Swedish, Danish, and Dutch embeddings. Our experimental results on the contextualized embeddings pointed out that adding more contextual information to embeddings is detrimental to the classifier's performance. We also observed that removing morpho-syntactic features such as articles from the training corpora of embeddings decreases the classification performance dramatically, indicating a large portion of the information is encoded in the relationship between nouns and articles. ",
keywords = "cs.CL",
author = "Hartger Veeman and Ali Basirat",
note = "Accepted at the 4th Swedish Symposium on Deep Learning (SSDL-2020) and the 8th Swedish Language Technology Conference (SLTC-2020)",
year = "2020",
month = aug,
day = "5",
language = "Udefineret/Ukendt",
type = "WorkingPaper",

}

RIS

TY - UNPB

T1 - An exploration of the encoding of grammatical gender in word embeddings

AU - Veeman, Hartger

AU - Basirat, Ali

N1 - Accepted at the 4th Swedish Symposium on Deep Learning (SSDL-2020) and the 8th Swedish Language Technology Conference (SLTC-2020)

PY - 2020/8/5

Y1 - 2020/8/5

N2 - The vector representation of words, known as word embeddings, has opened a new research approach in linguistic studies. These representations can capture different types of information about words. The grammatical gender of nouns is a typical classification of nouns based on their formal and semantic properties. The study of grammatical gender based on word embeddings can give insight into discussions on how grammatical genders are determined. In this study, we compare different sets of word embeddings according to the accuracy of a neural classifier determining the grammatical gender of nouns. It is found that there is an overlap in how grammatical gender is encoded in Swedish, Danish, and Dutch embeddings. Our experimental results on the contextualized embeddings pointed out that adding more contextual information to embeddings is detrimental to the classifier's performance. We also observed that removing morpho-syntactic features such as articles from the training corpora of embeddings decreases the classification performance dramatically, indicating a large portion of the information is encoded in the relationship between nouns and articles.

AB - The vector representation of words, known as word embeddings, has opened a new research approach in linguistic studies. These representations can capture different types of information about words. The grammatical gender of nouns is a typical classification of nouns based on their formal and semantic properties. The study of grammatical gender based on word embeddings can give insight into discussions on how grammatical genders are determined. In this study, we compare different sets of word embeddings according to the accuracy of a neural classifier determining the grammatical gender of nouns. It is found that there is an overlap in how grammatical gender is encoded in Swedish, Danish, and Dutch embeddings. Our experimental results on the contextualized embeddings pointed out that adding more contextual information to embeddings is detrimental to the classifier's performance. We also observed that removing morpho-syntactic features such as articles from the training corpora of embeddings decreases the classification performance dramatically, indicating a large portion of the information is encoded in the relationship between nouns and articles.

KW - cs.CL

M3 - Preprint

BT - An exploration of the encoding of grammatical gender in word embeddings

ER -

ID: 366049128